Prediction Model to Analyze Source Node Localization Using Machine Learning and Fault-Tolerant in Wireless Sensor Networks

Q4 Computer Science
P. Sakthi, Shunmuga Sundaram, K. Vijayan
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引用次数: 0

Abstract

– Recent technological developments include wireless sensor networks in modern and intelligent environments. Finding the localization of the sensor node is a problem in the research community field. Localization on a two-dimensional plane, a key focus in WSNs, is to maximize the lifespan and overall performance of sensor nodes by minimizing their energy consumption. The compiled data that base stations receive from packets.in wireless sensor networks can be used to make decisions with the help of localization. A cost-effective method of solving the problem is not the Internet of Things with GPR tracking sensor zones. There are several approaches to locating wireless sensor networks with unclear sensor locations. The main challenge lies in accurately determining the location of the base station's sensor node with a minor localization error during wireless communication. The proposed method, Distributed clustering Distance Algorithm (DCDA) using machine learning, considers the distance estimation error, location in accuracy, and fault tolerance issue with WSNs. According to the findings, the average localization error is 11% and 11.3%, respectively. For anchor nodes 20-80 and 200-450. As a result, when compared to contemporary methods of localization with centroid weighted algorithm (LCWA), Distance vector hop algorithm (DV-Hop), Coefficient for reparation algorithm (CRA), and Weighted Distributed Hyperbolic algorithm (WDHA) methods, the demonstrated Distributed clustering Distance Algorithm (DCDA) gives greater accuracy. According to the experimental results, the suggested algorithm significantly improves the number of alive nodes compared to the LBCA and G. Gupta FT algorithms. Specifically, the proposed algorithm achieves a remarkable 96% increase in active and functional nodes within the wireless sensor network.
基于机器学习和容错的无线传感器网络源节点定位预测模型
–最近的技术发展包括现代智能环境中的无线传感器网络。找到传感器节点的定位是研究界领域的一个问题。二维平面上的定位是无线传感器网络的一个关键焦点,它是通过最小化传感器节点的能量消耗来最大限度地延长传感器节点的寿命和整体性能。在定位的帮助下,基站从无线传感器网络中的分组接收的编译数据可以用于做出决策。解决这个问题的一种成本效益高的方法不是使用GPR跟踪传感器区域的物联网。有几种方法可以定位传感器位置不清楚的无线传感器网络。主要挑战在于在无线通信期间以较小的定位误差准确地确定基站的传感器节点的位置。所提出的方法,使用机器学习的分布式聚类距离算法(DCDA),考虑了无线传感器网络的距离估计误差、定位精度和容错问题。根据研究结果,平均定位误差分别为11%和11.3%。对于锚节点20-80和200-450。结果,与质心加权算法(LCWA)、距离向量跳跃算法(DV-hop)、修复系数算法(CRA)和加权分布式双曲算法(WDHA)等现代定位方法相比,所证明的分布式聚类距离算法(DCDA)具有更高的精度。根据实验结果,与LBCA和G.Gupta FT算法相比,所提出的算法显著提高了活动节点的数量。具体而言,所提出的算法在无线传感器网络中的活动节点和功能节点显著增加了96%。
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来源期刊
International Journal of Computer Networks and Applications
International Journal of Computer Networks and Applications Computer Science-Computer Science Applications
CiteScore
2.30
自引率
0.00%
发文量
40
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